The epidemiology has recently witnessed great advances based on computational models. Its scope and impact are getting wider thanks to the new data sources feeding analytical frameworks and models. Besides traditional variables considered in epidemiology, large-scale social patterns can be now integrated in real time with multi-source data bridging the gap between different scales. In a hyper-connected world, models and analysis of interactions and social behaviors are key to understand and stop outbreaks. Big Data along with apps are enabling for validating and refining models with real world data at scale, as well as new applications and frameworks to map and track diseases in real time or optimize the necessary resources and interventions such as testing and vaccination strategies. Digital epidemiology is positioning as a discipline necessary to control epidemics and implement actionable protocols and policies. In this review we address the research areas configuring current digital epidemiology: transmission and propagation models and descriptions based on human networks and contact tracing, mobility analysis and spatio-temporal propagation of infectious diseases and the emerging field of infodemics that comprises the study of information and knowledge propagation related to epidemics. Digital epidemiology has the potential to create new operational mechanisms for prevention and mitigation, monitoring of the evolution of epidemics, assessing their impact and evaluating the pharmaceutical and non-pharmaceutical measures to fight the outbreaks.
翻译:由于新的数据来源为分析框架和模型提供了新的分析框架和模型,流行病学的范围和影响正在扩大;除了流行病学中考虑的传统变量外,大规模社会模式现在可以与弥合不同规模差距的多来源数据实时结合;在一个高度相连的世界中,互动和社会行为的模型和分析是理解和制止爆发的关键;大数据与应用程序一起,有助于根据规模真实的世界数据验证和完善模型,以及新的应用和框架,实时地测绘和跟踪疾病或优化必要的资源和干预措施,如检测和接种战略;数字流行病学是控制流行病和执行可采取行动的规程和政策所必要的纪律;在本次审查中,我们处理以下研究领域的问题:根据人类网络和接触追踪、流动分析、传染性疾病的传染和传播模型和描述,以及包括研究与流行病有关的信息和知识传播在内的新模式领域;数字流行病学有可能为预防和减缓流行病以及执行可操作性协议和政策创造新的运作机制;监测流行病的传播和传播和蔓延演变;评估其流行病的蔓延和蔓延情况;评估其流行病的蔓延和演变情况;评估其非医药性机制;评估流行病的蔓延和流行病的蔓延情况。